US President Donald Trump Announces Credit Card Rate Cuts, How Does it Affect Crypto Investments?

TheNewsCryptoОпубліковано о 2026-01-10Востаннє оновлено о 2026-01-10

Анотація

US President Donald Trump has announced a proposal to cap credit card interest rates at 10%, along with other measures like cutting home loan rates and removing taxes on car loans. While these announcements could potentially free up finances for crypto investments, they require congressional approval. The crypto market is currently experiencing volatility, with BTC and ETH seeing minor declines. Additionally, spot Bitcoin and Ether ETFs have recorded consecutive days of outflows. Investors are advised to conduct thorough research before making any crypto investments.

US President Donald Trump has announced rate cuts on credit cards, bringing them down significantly for citizens. This in addition to cutting home loan rates and removing tax on American car loans. These are expected to collectively influence crypto investments – thereby impacting crypto prices.

Announcements by US President Donald Trump

US President Donald Trump has made several announcements; however, three of them have drawn a lot of attention in the context of crypto investments. The most recent announcement pertains to capping the interest rate on credit cards. Trump has said that credit card rates will be capped to 10% for one year starting from January 20, 2026, bringing them down from 20-30%.

However, a fact check on X by its AI tool, Grok, has highlighted that this could be a proposal or call for action. This is based on the principle that capping credit card interest rates requires congressional legislation. Interestingly, the announcement comes days after Trump tabled his plan to lower housing costs for Americans and implement no tax on American cars.

What Happens to Crypto Investments?

Global crypto markets are holding volatility with a dip of 0.84% in the market cap. This is mainly in consideration of a delay in the court’s verdict on tariffs and the announcement of the unemployment rate. The possibility of capping credit card rates, along with other announcements, does open the possibility to save finances and divert them to the crypto market. The Federal Reserve cutting rate at the January 27-28 meeting could further facilitate allocation to the segment.

For now, the likes of BTC and ETH are down by 0.36% and 0.77% over the last 24 hours, respectively. Bitcoin tokens are trading at $90,529.63, and Ether is exchanging hands at $3,087.63 when the article is being written. It is recommended to do thorough research and risk assessment before crypto investments.

ETFs’ Performance

Spot Bitcoin ETF and Spot Ether ETF noted significant outflows on January 09, 2026 – making it the 4th consecutive time for BTC ETF and the 3rd consecutive day for ETH ETF. Outward movement was $250 million for Spot Bitcoin ETF and $93.8 million for Spot Ether ETF.

Their respective historical cumulative inflows now stand at $56.38 billion and $12.45 billion. Suffice to say, volatility is impacting their ETF products in the market as well.

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Tagscrypto investments.TRUMP

Пов'язані питання

QWhat specific announcements did US President Donald Trump make regarding credit card rates and other financial measures?

AUS President Donald Trump announced a cap on credit card interest rates at 10% for one year starting from January 20, 2026, down from 20-30%. He also announced cuts to home loan rates and the removal of tax on American car loans.

QAccording to the article, how might Trump's announcements potentially affect crypto investments?

AThe announcements could lead to individuals saving money on credit card interest, home loans, and car loans, which might then be diverted into the crypto market. A potential Federal Reserve rate cut could further facilitate allocation to crypto investments.

QWhat was the performance of Bitcoin and Ethereum at the time the article was written?

AAt the time the article was written, Bitcoin (BTC) was down 0.36% trading at $90,529.63, and Ethereum (ETH) was down 0.77% trading at $3,087.63 over the last 24 hours.

QWhat was the trend in Spot Bitcoin and Spot Ether ETF flows on January 09, 2026?

AOn January 09, 2026, Spot Bitcoin ETFs saw outflows of $250 million (the 4th consecutive day of outflows), and Spot Ether ETFs saw outflows of $93.8 million (the 3rd consecutive day of outflows).

QWhat important point did the fact check by Grok on X highlight about Trump's credit card rate cap announcement?

AThe fact check by Grok on X highlighted that capping credit card interest rates requires congressional legislation, suggesting that Trump's announcement could be a proposal or a call for action rather than an immediate, executable policy.

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